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<h2>1D 测量</h2>
<p><a href="#section_list">List of Operators ↓</a></p>
<p>This chapter contains operators for 1D 测量.
</p>
<h3>Concept of 1D 测量</h3>
<p>With 1D 测量, edges, i.e., transitions from light to dark or from dark
to light, can be located along a predefined line or arc. This allows you to
measure the dimension of parts fast and easily with high accuracy.
Note that if you want to measure the dimensions of geometric primitives like
circles, ellipses, rectangles, or lines, and approximate values for the
positions, orientations, and geometric shapes are known,
<a href="toc_2dmetrology.html">2D 度量</a> may be a suitable alternative.
</p>
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LU+xa6Xz109V0Z66Tl2n5MGpS77+P47lh1VO9FXNAAAAAElFTkSuQmCC " preserveAspectRatio="none" x="0" y="0" width="100%" height="100%"></image>
</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
Measure edges and the distances between them along a line (1)
or along an arc (2). These images are from the example programs
fuzzy_measure_pin.hdev and measure_ring.hdev.
</div>
</div>
<p>In the following, the steps that are required to use 1D 测量 are
described briefly.
</p>
<dl class="generic">


<dt><b>Generate measure object:</b></dt>
<dd>
<p>

First, a measure object must be generated that describes the region of
interest for the measurement. If the measurement should be performed along a
line, the measure object is defined by a rectangle. If it should be performed
along an arc, the measure object is defined as an annual arc. The measure
objects are generated by 该算子s
</p>
<ul>
<li>
<p> <a href="gen_measure_rectangle2.html"><code><span data-if="hdevelop" style="display:inline"><code>gen_measure_rectangle2</code></span><span data-if="c" style="display:none"><code>gen_measure_rectangle2</code></span><span data-if="cpp" style="display:none"><code>GenMeasureRectangle2</code></span><span data-if="com" style="display:none"><code>GenMeasureRectangle2</code></span><span data-if="dotnet" style="display:none"><code>GenMeasureRectangle2</code></span><span data-if="python" style="display:none"><code>gen_measure_rectangle2</code></span></code></a> or
</p>
</li>
<li>
<p> <a href="gen_measure_arc.html"><code><span data-if="hdevelop" style="display:inline"><code>gen_measure_arc</code></span><span data-if="c" style="display:none"><code>gen_measure_arc</code></span><span data-if="cpp" style="display:none"><code>GenMeasureArc</code></span><span data-if="com" style="display:none"><code>GenMeasureArc</code></span><span data-if="dotnet" style="display:none"><code>GenMeasureArc</code></span><span data-if="python" style="display:none"><code>gen_measure_arc</code></span></code></a>.
</p>
</li>
</ul>

<p>Note that you can use shape-based matching (see chapter
<a href="toc_matching_shapebased.html">Matching / Shape-Based</a>) to automatically align
the measure objects.
</p>
</dd>

<dt><b>Perform the measurement:</b></dt>
<dd>
<p>

Then, the actual measurement is performed. For this, typically
one of the following operators is used:
</p>
<ul>

<li>
<p> <a href="measure_pos.html"><code><span data-if="hdevelop" style="display:inline"><code>measure_pos</code></span><span data-if="c" style="display:none"><code>measure_pos</code></span><span data-if="cpp" style="display:none"><code>MeasurePos</code></span><span data-if="com" style="display:none"><code>MeasurePos</code></span><span data-if="dotnet" style="display:none"><code>MeasurePos</code></span><span data-if="python" style="display:none"><code>measure_pos</code></span></code></a> extracts straight edges perpendicular to the main
axis of the measure object and returns the positions of the edge centers, the
edge amplitudes, and the distances between consecutive edges.
</p>
</li>
<li>
<p> <a href="measure_pairs.html"><code><span data-if="hdevelop" style="display:inline"><code>measure_pairs</code></span><span data-if="c" style="display:none"><code>measure_pairs</code></span><span data-if="cpp" style="display:none"><code>MeasurePairs</code></span><span data-if="com" style="display:none"><code>MeasurePairs</code></span><span data-if="dotnet" style="display:none"><code>MeasurePairs</code></span><span data-if="python" style="display:none"><code>measure_pairs</code></span></code></a> extracts straight edge pairs perpendicular to the
main axis of the measure object and returns the positions of the edge centers
of the edge pairs, the edge amplitudes for the edge pairs, the distances
between the edges of an edge pair, and the distances between consecutive edge
pairs.
</p>
</li>
<li>
<p> <a href="measure_thresh.html"><code><span data-if="hdevelop" style="display:inline"><code>measure_thresh</code></span><span data-if="c" style="display:none"><code>measure_thresh</code></span><span data-if="cpp" style="display:none"><code>MeasureThresh</code></span><span data-if="com" style="display:none"><code>MeasureThresh</code></span><span data-if="dotnet" style="display:none"><code>MeasureThresh</code></span><span data-if="python" style="display:none"><code>measure_thresh</code></span></code></a> extracts points with a particular gray value
along the main axis of the measure object and returns their positions and the
distances between consecutive points.
</p>
</li>
</ul>

<p>Alternatively, if there are extra edges that do not belong to the
measurement, fuzzy measuring can be applied. Here, so-called fuzzy rules,
which describe the features of good edges, must be defined. Possible features
are, e.g., the position, the distance, the gray values, or the amplitude of
edges. These functions are created with <a href="create_funct_1d_pairs.html"><code><span data-if="hdevelop" style="display:inline"><code>create_funct_1d_pairs</code></span><span data-if="c" style="display:none"><code>create_funct_1d_pairs</code></span><span data-if="cpp" style="display:none"><code>CreateFunct1dPairs</code></span><span data-if="com" style="display:none"><code>CreateFunct1dPairs</code></span><span data-if="dotnet" style="display:none"><code>CreateFunct1dPairs</code></span><span data-if="python" style="display:none"><code>create_funct_1d_pairs</code></span></code></a> and
passed to the tool with <a href="set_fuzzy_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>set_fuzzy_measure</code></span><span data-if="c" style="display:none"><code>set_fuzzy_measure</code></span><span data-if="cpp" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="com" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="dotnet" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="python" style="display:none"><code>set_fuzzy_measure</code></span></code></a> or
<a href="set_fuzzy_measure_norm_pair.html"><code><span data-if="hdevelop" style="display:inline"><code>set_fuzzy_measure_norm_pair</code></span><span data-if="c" style="display:none"><code>set_fuzzy_measure_norm_pair</code></span><span data-if="cpp" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="com" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="dotnet" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="python" style="display:none"><code>set_fuzzy_measure_norm_pair</code></span></code></a>. Then, based on these rules, one of the
following operators will extract the most appropriate edges:
</p>
<ul>

<li>
<p> <a href="fuzzy_measure_pos.html"><code><span data-if="hdevelop" style="display:inline"><code>fuzzy_measure_pos</code></span><span data-if="c" style="display:none"><code>fuzzy_measure_pos</code></span><span data-if="cpp" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="com" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="dotnet" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="python" style="display:none"><code>fuzzy_measure_pos</code></span></code></a> extracts straight edges perpendicular to the
main axis of the measure object and returns the positions of the edge
centers, the edge amplitudes, the fuzzy scores, and the distances between
consecutive edges.
</p>
</li>
<li>
<p> <a href="fuzzy_measure_pairs.html"><code><span data-if="hdevelop" style="display:inline"><code>fuzzy_measure_pairs</code></span><span data-if="c" style="display:none"><code>fuzzy_measure_pairs</code></span><span data-if="cpp" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="com" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="dotnet" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="python" style="display:none"><code>fuzzy_measure_pairs</code></span></code></a> extracts straight edge pairs perpendicular
to the main axis of the measure object and returns the positions of the first
and second edges of the edge pairs, the edge amplitudes for the edge pairs,
the positions of the centers of the edge pairs, the fuzzy scores, the
distances between the edges of an edge pair, and the distances between
consecutive edge pairs.
</p>
</li>
<li>
<p> <a href="fuzzy_measure_pairing.html"><code><span data-if="hdevelop" style="display:inline"><code>fuzzy_measure_pairing</code></span><span data-if="c" style="display:none"><code>fuzzy_measure_pairing</code></span><span data-if="cpp" style="display:none"><code>FuzzyMeasurePairing</code></span><span data-if="com" style="display:none"><code>FuzzyMeasurePairing</code></span><span data-if="dotnet" style="display:none"><code>FuzzyMeasurePairing</code></span><span data-if="python" style="display:none"><code>fuzzy_measure_pairing</code></span></code></a> is similar to <a href="fuzzy_measure_pairs.html"><code><span data-if="hdevelop" style="display:inline"><code>fuzzy_measure_pairs</code></span><span data-if="c" style="display:none"><code>fuzzy_measure_pairs</code></span><span data-if="cpp" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="com" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="dotnet" style="display:none"><code>FuzzyMeasurePairs</code></span><span data-if="python" style="display:none"><code>fuzzy_measure_pairs</code></span></code></a>
with the exception that it is also possible to extract interleaving and
included pairs using the parameter Pairing.
</p>
</li>
</ul>

<p>Alternatively to the automatic extraction of edges or points within the
measure object, you can also extract a one-dimensional gray value profile
perpendicular to the rectangle or annular arc and evaluate this gray value
information according to your needs. The gray value profile within the
measure object can be extracted with 该算子
</p>
<ul>
<li>
<p> <a href="measure_projection.html"><code><span data-if="hdevelop" style="display:inline"><code>measure_projection</code></span><span data-if="c" style="display:none"><code>measure_projection</code></span><span data-if="cpp" style="display:none"><code>MeasureProjection</code></span><span data-if="com" style="display:none"><code>MeasureProjection</code></span><span data-if="dotnet" style="display:none"><code>MeasureProjection</code></span><span data-if="python" style="display:none"><code>measure_projection</code></span></code></a>.
</p>
</li>
</ul>

</dd>

<dt><b>Destroy measure object handle:</b></dt>
<dd>
<p>

When you no longer need the measure object, you destroy it by passing
the handle to
</p>
<ul>
<li>
<p> <a href="close_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>close_measure</code></span><span data-if="c" style="display:none"><code>close_measure</code></span><span data-if="cpp" style="display:none"><code>CloseMeasure</code></span><span data-if="com" style="display:none"><code>CloseMeasure</code></span><span data-if="dotnet" style="display:none"><code>CloseMeasure</code></span><span data-if="python" style="display:none"><code>close_measure</code></span></code></a>.
</p>
</li>
</ul>

</dd>
</dl>
<h3>Further operators</h3>
<p>In addition to 该算子s mentioned above, you can use
<a href="reset_fuzzy_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>reset_fuzzy_measure</code></span><span data-if="c" style="display:none"><code>reset_fuzzy_measure</code></span><span data-if="cpp" style="display:none"><code>ResetFuzzyMeasure</code></span><span data-if="com" style="display:none"><code>ResetFuzzyMeasure</code></span><span data-if="dotnet" style="display:none"><code>ResetFuzzyMeasure</code></span><span data-if="python" style="display:none"><code>reset_fuzzy_measure</code></span></code></a> to discard a fuzzy function of a fuzzy set that
was set via <a href="set_fuzzy_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>set_fuzzy_measure</code></span><span data-if="c" style="display:none"><code>set_fuzzy_measure</code></span><span data-if="cpp" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="com" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="dotnet" style="display:none"><code>SetFuzzyMeasure</code></span><span data-if="python" style="display:none"><code>set_fuzzy_measure</code></span></code></a> or <a href="set_fuzzy_measure_norm_pair.html"><code><span data-if="hdevelop" style="display:inline"><code>set_fuzzy_measure_norm_pair</code></span><span data-if="c" style="display:none"><code>set_fuzzy_measure_norm_pair</code></span><span data-if="cpp" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="com" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="dotnet" style="display:none"><code>SetFuzzyMeasureNormPair</code></span><span data-if="python" style="display:none"><code>set_fuzzy_measure_norm_pair</code></span></code></a>
before, <a href="translate_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>translate_measure</code></span><span data-if="c" style="display:none"><code>translate_measure</code></span><span data-if="cpp" style="display:none"><code>TranslateMeasure</code></span><span data-if="com" style="display:none"><code>TranslateMeasure</code></span><span data-if="dotnet" style="display:none"><code>TranslateMeasure</code></span><span data-if="python" style="display:none"><code>translate_measure</code></span></code></a> to translate the reference point of the
measure object to a specified position, <a href="write_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>write_measure</code></span><span data-if="c" style="display:none"><code>write_measure</code></span><span data-if="cpp" style="display:none"><code>WriteMeasure</code></span><span data-if="com" style="display:none"><code>WriteMeasure</code></span><span data-if="dotnet" style="display:none"><code>WriteMeasure</code></span><span data-if="python" style="display:none"><code>write_measure</code></span></code></a> and
<a href="read_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>read_measure</code></span><span data-if="c" style="display:none"><code>read_measure</code></span><span data-if="cpp" style="display:none"><code>ReadMeasure</code></span><span data-if="com" style="display:none"><code>ReadMeasure</code></span><span data-if="dotnet" style="display:none"><code>ReadMeasure</code></span><span data-if="python" style="display:none"><code>read_measure</code></span></code></a> to write the measure object to file and read it from
file again, and <a href="serialize_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>serialize_measure</code></span><span data-if="c" style="display:none"><code>serialize_measure</code></span><span data-if="cpp" style="display:none"><code>SerializeMeasure</code></span><span data-if="com" style="display:none"><code>SerializeMeasure</code></span><span data-if="dotnet" style="display:none"><code>SerializeMeasure</code></span><span data-if="python" style="display:none"><code>serialize_measure</code></span></code></a> and <a href="deserialize_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>deserialize_measure</code></span><span data-if="c" style="display:none"><code>deserialize_measure</code></span><span data-if="cpp" style="display:none"><code>DeserializeMeasure</code></span><span data-if="com" style="display:none"><code>DeserializeMeasure</code></span><span data-if="dotnet" style="display:none"><code>DeserializeMeasure</code></span><span data-if="python" style="display:none"><code>deserialize_measure</code></span></code></a> to
serialize and deserialize the measure object.
</p>
<h3>Glossary</h3>
<p>In the following, the most important terms that are used in the context of
1D 测量 are described.
</p>
<dl class="generic">


<dt><b>measure object</b></dt>
<dd>
<p>
 A data structure that contains a specific region of
interest that is prepared for the extraction of straight edges which
lie perpendicular to the major axis of a rectangle or an annular arc.
</p>
</dd>

<dt><b>annular arc</b></dt>
<dd>
<p>
  A circular arc with an associated width.
</p>
</dd>
</dl>
<h3>Further Information</h3>
<p>See also the <code>“Solution Guide Basics”</code> and
<code>“Solution Guide on 1D 测量”</code> for further details about
1D 测量.
</p>
<hr>
<h4 id="section_list">算子列表</h4>
<dl>
<dt><a href="close_measure.html"><code><span data-if="hdevelop" style="display:inline;">close_measure</span><span data-if="dotnet" style="display:none;">CloseMeasure</span><span data-if="python" style="display:none;">close_measure</span><span data-if="cpp" style="display:none;">CloseMeasure</span><span data-if="c" style="display:none;">close_measure</span></code></a></dt>
<dd>Delete a measure object.</dd>
</dl>
<dl>
<dt><a href="deserialize_measure.html"><code><span data-if="hdevelop" style="display:inline;">deserialize_measure</span><span data-if="dotnet" style="display:none;">DeserializeMeasure</span><span data-if="python" style="display:none;">deserialize_measure</span><span data-if="cpp" style="display:none;">DeserializeMeasure</span><span data-if="c" style="display:none;">deserialize_measure</span></code></a></dt>
<dd>Deserialize a serialized measure object.</dd>
</dl>
<dl>
<dt><a href="fuzzy_measure_pairing.html"><code><span data-if="hdevelop" style="display:inline;">fuzzy_measure_pairing</span><span data-if="dotnet" style="display:none;">FuzzyMeasurePairing</span><span data-if="python" style="display:none;">fuzzy_measure_pairing</span><span data-if="cpp" style="display:none;">FuzzyMeasurePairing</span><span data-if="c" style="display:none;">fuzzy_measure_pairing</span></code></a></dt>
<dd>Extract straight edge pairs perpendicular to a rectangle or an
annular arc.</dd>
</dl>
<dl>
<dt><a href="fuzzy_measure_pairs.html"><code><span data-if="hdevelop" style="display:inline;">fuzzy_measure_pairs</span><span data-if="dotnet" style="display:none;">FuzzyMeasurePairs</span><span data-if="python" style="display:none;">fuzzy_measure_pairs</span><span data-if="cpp" style="display:none;">FuzzyMeasurePairs</span><span data-if="c" style="display:none;">fuzzy_measure_pairs</span></code></a></dt>
<dd>Extract straight edge pairs perpendicular to a rectangle or an annular arc.</dd>
</dl>
<dl>
<dt><a href="fuzzy_measure_pos.html"><code><span data-if="hdevelop" style="display:inline;">fuzzy_measure_pos</span><span data-if="dotnet" style="display:none;">FuzzyMeasurePos</span><span data-if="python" style="display:none;">fuzzy_measure_pos</span><span data-if="cpp" style="display:none;">FuzzyMeasurePos</span><span data-if="c" style="display:none;">fuzzy_measure_pos</span></code></a></dt>
<dd>Extract straight edges perpendicular to a rectangle or an annular arc.</dd>
</dl>
<dl>
<dt><a href="gen_measure_arc.html"><code><span data-if="hdevelop" style="display:inline;">gen_measure_arc</span><span data-if="dotnet" style="display:none;">GenMeasureArc</span><span data-if="python" style="display:none;">gen_measure_arc</span><span data-if="cpp" style="display:none;">GenMeasureArc</span><span data-if="c" style="display:none;">gen_measure_arc</span></code></a></dt>
<dd>Prepare the extraction of straight edges perpendicular to an annular arc.</dd>
</dl>
<dl>
<dt><a href="gen_measure_rectangle2.html"><code><span data-if="hdevelop" style="display:inline;">gen_measure_rectangle2</span><span data-if="dotnet" style="display:none;">GenMeasureRectangle2</span><span data-if="python" style="display:none;">gen_measure_rectangle2</span><span data-if="cpp" style="display:none;">GenMeasureRectangle2</span><span data-if="c" style="display:none;">gen_measure_rectangle2</span></code></a></dt>
<dd>Prepare the extraction of straight edges perpendicular to a rectangle.</dd>
</dl>
<dl>
<dt><a href="get_measure_param.html"><code><span data-if="hdevelop" style="display:inline;">get_measure_param</span><span data-if="dotnet" style="display:none;">GetMeasureParam</span><span data-if="python" style="display:none;">get_measure_param</span><span data-if="cpp" style="display:none;">GetMeasureParam</span><span data-if="c" style="display:none;">get_measure_param</span></code></a></dt>
<dd>Return the parameters and properties of a measure object.</dd>
</dl>
<dl>
<dt><a href="measure_pairs.html"><code><span data-if="hdevelop" style="display:inline;">measure_pairs</span><span data-if="dotnet" style="display:none;">MeasurePairs</span><span data-if="python" style="display:none;">measure_pairs</span><span data-if="cpp" style="display:none;">MeasurePairs</span><span data-if="c" style="display:none;">measure_pairs</span></code></a></dt>
<dd>Extract straight edge pairs perpendicular to a rectangle or annular arc.</dd>
</dl>
<dl>
<dt><a href="measure_pos.html"><code><span data-if="hdevelop" style="display:inline;">measure_pos</span><span data-if="dotnet" style="display:none;">MeasurePos</span><span data-if="python" style="display:none;">measure_pos</span><span data-if="cpp" style="display:none;">MeasurePos</span><span data-if="c" style="display:none;">measure_pos</span></code></a></dt>
<dd>Extract straight edges perpendicular to a rectangle or annular arc.</dd>
</dl>
<dl>
<dt><a href="measure_projection.html"><code><span data-if="hdevelop" style="display:inline;">measure_projection</span><span data-if="dotnet" style="display:none;">MeasureProjection</span><span data-if="python" style="display:none;">measure_projection</span><span data-if="cpp" style="display:none;">MeasureProjection</span><span data-if="c" style="display:none;">measure_projection</span></code></a></dt>
<dd>Extract a gray value profile perpendicular to a rectangle or annular arc.</dd>
</dl>
<dl>
<dt><a href="measure_thresh.html"><code><span data-if="hdevelop" style="display:inline;">measure_thresh</span><span data-if="dotnet" style="display:none;">MeasureThresh</span><span data-if="python" style="display:none;">measure_thresh</span><span data-if="cpp" style="display:none;">MeasureThresh</span><span data-if="c" style="display:none;">measure_thresh</span></code></a></dt>
<dd>Extracting points with a particular gray value along a rectangle or an
annular arc.</dd>
</dl>
<dl>
<dt><a href="read_measure.html"><code><span data-if="hdevelop" style="display:inline;">read_measure</span><span data-if="dotnet" style="display:none;">ReadMeasure</span><span data-if="python" style="display:none;">read_measure</span><span data-if="cpp" style="display:none;">ReadMeasure</span><span data-if="c" style="display:none;">read_measure</span></code></a></dt>
<dd>Read a measure object from a file.</dd>
</dl>
<dl>
<dt><a href="reset_fuzzy_measure.html"><code><span data-if="hdevelop" style="display:inline;">reset_fuzzy_measure</span><span data-if="dotnet" style="display:none;">ResetFuzzyMeasure</span><span data-if="python" style="display:none;">reset_fuzzy_measure</span><span data-if="cpp" style="display:none;">ResetFuzzyMeasure</span><span data-if="c" style="display:none;">reset_fuzzy_measure</span></code></a></dt>
<dd>Reset a fuzzy function.</dd>
</dl>
<dl>
<dt><a href="serialize_measure.html"><code><span data-if="hdevelop" style="display:inline;">serialize_measure</span><span data-if="dotnet" style="display:none;">SerializeMeasure</span><span data-if="python" style="display:none;">serialize_measure</span><span data-if="cpp" style="display:none;">SerializeMeasure</span><span data-if="c" style="display:none;">serialize_measure</span></code></a></dt>
<dd>Serialize a measure object.</dd>
</dl>
<dl>
<dt><a href="set_fuzzy_measure.html"><code><span data-if="hdevelop" style="display:inline;">set_fuzzy_measure</span><span data-if="dotnet" style="display:none;">SetFuzzyMeasure</span><span data-if="python" style="display:none;">set_fuzzy_measure</span><span data-if="cpp" style="display:none;">SetFuzzyMeasure</span><span data-if="c" style="display:none;">set_fuzzy_measure</span></code></a></dt>
<dd>Specify a fuzzy function.</dd>
</dl>
<dl>
<dt><a href="set_fuzzy_measure_norm_pair.html"><code><span data-if="hdevelop" style="display:inline;">set_fuzzy_measure_norm_pair</span><span data-if="dotnet" style="display:none;">SetFuzzyMeasureNormPair</span><span data-if="python" style="display:none;">set_fuzzy_measure_norm_pair</span><span data-if="cpp" style="display:none;">SetFuzzyMeasureNormPair</span><span data-if="c" style="display:none;">set_fuzzy_measure_norm_pair</span></code></a></dt>
<dd>Specify a normalized fuzzy function for edge pairs.</dd>
</dl>
<dl>
<dt><a href="translate_measure.html"><code><span data-if="hdevelop" style="display:inline;">translate_measure</span><span data-if="dotnet" style="display:none;">TranslateMeasure</span><span data-if="python" style="display:none;">translate_measure</span><span data-if="cpp" style="display:none;">TranslateMeasure</span><span data-if="c" style="display:none;">translate_measure</span></code></a></dt>
<dd>Translate a measure object.</dd>
</dl>
<dl>
<dt><a href="write_measure.html"><code><span data-if="hdevelop" style="display:inline;">write_measure</span><span data-if="dotnet" style="display:none;">WriteMeasure</span><span data-if="python" style="display:none;">write_measure</span><span data-if="cpp" style="display:none;">WriteMeasure</span><span data-if="c" style="display:none;">write_measure</span></code></a></dt>
<dd>将测量对象写入文件。</dd>
</dl>
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